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      "Entry type patent not standard. Not considered.\n"
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     "text": [
      "\\bibitem{王兰芬2010Swarm}\n",
      "王兰芬.Swarm突现计算模型的稳定性研究[D]. 2010.\n"
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     ]
    }
   ],
   "source": [
    "for i in range(len(manager.entries)):\n",
    "    print(manager.entries[i].to_bibitem())"
   ]
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